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I have a text file that contains gas price information by date. The format of the file is:

Month-Day-Year:Price

Example: GasPrices

I need to accomplish 2 tasks:

(1) Separate the input into -- month, day, year, price

(2) Calculate the average gas price per year and per month.

Can someone point me in the right direction, because I'm new to Stack Overflow and coding?

closed as too broad by Henry Woody, Jab, Bazingaa, hnefatl, gnat Mar 15 at 8:37

Please edit the question to limit it to a specific problem with enough detail to identify an adequate answer. Avoid asking multiple distinct questions at once. See the How to Ask page for help clarifying this question. If this question can be reworded to fit the rules in the help center, please edit the question.

  • 3
    Can you include the data as text here and add an example of your desired output? – Henry Woody Mar 14 at 23:52
  • 2
    Just try to write the code and we will help out through the mistakes. Directly giving the solution might not help you develop the skills required – Myjab Mar 14 at 23:53
  • include a data sample as a text file so we one can provide a solution without having to recreate a sample – hussam Mar 15 at 0:04
  • Welcome to Stack Overflow! Please familiarize with these FAQs and repost your question -- (1) How to create a Minimal, Complete, and Verifiable example - stackoverflow.com/help/mcve and (2) Why is voting important? - stackoverflow.com/help/why-vote. -- Happy Coding! – Life is complex Mar 15 at 1:06
2

This problem is so simple it doesn't even warrant using regular expression.
The beauty of python is that you can always economize on code.
your starting point is the separator : (I recreated your set and put it in a .txt file)

import pandas as pd

df = pd.read_table("stack_example.txt", sep = ":", header = -1, names = 
["date","val"])

enter image description here

df['month'] = pd.DatetimeIndex(df['date']).month
df['year']  = pd.DatetimeIndex(df['date']).year
df.head()

enter image description here

finally

df_grp = df.loc[:,["val","month","year"]].groupby(["month", "year"]).mean()
df_grp

enter image description here

without counting .head() and import pandas this is 4 lines of code.

0
with open('/path/to/file','r') as f:
   fullfile = [x.strip() for x in f.readlines()]
datesprices=[(x.split(':')[0], x.split(':')[1]) for x in fullfile]

This code reads the file into a list called fullfile, strips newline characters, and puts the prices corresponding to the dates into a list of tuples using the split function. If you have questions comment.

0

You can use the csv stdlib module, which is good for all sorts of character-delimited file parsing.

import csv

with open("path/to/file") as f:
    reader = csv.reader(f, delimiter=":")
    for date, gas_price in reader:
        # do whatever
0

Someone had mentioned using Regex, so I designed all of my answers using regular expressions. There are multiple ways to accomplish the first task in your question, which was to split the input data into 4 elements (month, day, year, price). I'm not sure what output you need, so you can modify this code to use a list, dictionary, etc.

Answer One

import re

with open('tmpFile.txt', 'r') as input:
  lines = input.readlines()

  for line in lines:
    input_pattern = re.compile(r'(\d{2}-\d{2}-\d{4}):(\d{1}\.\d{2,3})')
    find_pattern = re.search(input_pattern, line)
    if find_pattern:
        ############################################
        # The regex above has 3 groups.
        # group(0) outputs this -- 04-05-1993:1.068
        # group(1) outputs this -- 04-05-1993
        # group(2) outputs this -- 1.068
        ############################################
        date_of_price = find_pattern.group(1)
        price_of_gas = find_pattern.group(2)

        print (date_of_price.split('-'))
        # outputs 
        ['04', '05', '1993']
        ['04', '05', '1993']
        ['04', '19', '1993']

        print (price_of_gas)
        # outputs
        1.068
        1.079
        1.079

Answer Two

import re

input = open('tmpFile.txt', 'r')
  for line in input.readlines():
    print (re.split('[\-?:]+', line.rstrip('\n')))
    # outputs 
    ['04', '05', '1993', '1.068']
    ['04', '05', '1993', '1.079']
    ['04', '19', '1993', '1.079']

Answer Three

The method below uses list comprehension to archive the same results as the ones above.

import re

input = open('tmpFile.txt', 'r')
gas_price_info = [re.split('[\-?:]+', x.rstrip('\n')) for x in input.readlines()]
print (gas_price_info)
# outputs 
[['04', '05', '1993', '1.068'], ['04', '05', '1993', '1.079'], ['04', '19', '1993', '1.079']]

Answer Four

This answer is similar to Answer Three, but the input line has been added to the list comprehension code. This outputs a nested list like Answer Three.

gas_price_info = [re.split('[\-?:]+', x.rstrip('\n')) for x in open('tmpFile.txt').readlines()]

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